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Advances in Spatial and Temporal Databases: 9th International Symposium, SSTD 2005, Angra dos Reis, Brazil, August 22-24, 2005, Proceedings

Claudia Bauzer Medeiros ; Max J. Egenhofer ; Elisa Bertino (eds.)

En conferencia: 9º International Symposium on Spatial and Temporal Databases (SSTD) . Angra dos Reis, Brazil . August 22, 2005 - August 24, 2005

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Institución detectada Año de publicación Navegá Descargá Solicitá
No detectada 2005 SpringerLink

Información

Tipo de recurso:

libros

ISBN impreso

978-3-540-28127-6

ISBN electrónico

978-3-540-31904-7

Editor responsable

Springer Nature

País de edición

Reino Unido

Fecha de publicación

Información sobre derechos de publicación

© Springer-Verlag Berlin Heidelberg 2005

Tabla de contenidos

On Discovering Moving Clusters in Spatio-temporal Data

Panos Kalnis; Nikos Mamoulis; Spiridon Bakiras

A moving cluster is defined by a set of objects that move close to each other for a long time interval. Real-life examples are a group of migrating animals, a convoy of cars moving in a city, etc. We study the discovery of moving clusters in a database of object trajectories. The difference of this problem compared to clustering trajectories and mining movement patterns is that the identity of a moving cluster remains unchanged while its location and content may change over time. For example, while a group of animals are migrating, some animals may leave the group or new animals may enter it. We provide a formal definition for moving clusters and describe three algorithms for their automatic discovery: (i) a straight-forward method based on the definition, (ii) a more efficient method which avoids redundant checks and (iii) an approximate algorithm which trades accuracy for speed by borrowing ideas from the MPEG-2 video encoding. The experimental results demonstrate the efficiency of our techniques and their applicability to large spatio-temporal datasets.

Palabras clave: Execution Time; Hash Table; Average Quality; Approximate Algorithm; Current Cluster.

- Moving Objects and Mobile Environments | Pp. 364-381

Semantic Caching for Multiresolution Spatial Query Processing in Mobile Environments

Sai Sun; Xiaofang Zhou; Heng Tao Shen

Spatial data are particularly useful in mobile environments. However, due to the low bandwidth of most wireless networks, developing large spatial database applications becomes a challenging process. In this paper, we provide the first attempt to combine two important techniques, multiresolution spatial data structure and semantic caching, towards efficient spatial query processing in mobile environments. Based on the study of the characteristics of multiresolution spatial data (MSD) and multiresolution spatial query, we propose a new semantic caching model called Multiresolution Semantic Caching (MSC) for caching MSD in mobile environments. MSC enriches the traditional three-category query processing in semantic cache to five categories, thus improving the performance in three ways: 1) a reduction in the amount and complexity of the remainder queries; 2) the redundant transmission of spatial data already residing in a cache is avoided; 3) a provision for satisfactory answers before 100% query results have been transmitted to the client side. Our extensive experiments on a very large and complex real spatial database show that MSC outperforms the traditional semantic caching models significantly.

Palabras clave: Query Processing; Query Result; Mobile Environment; Spatial Object; Mobile Client.

- Advanced Query Processing III | Pp. 382-399

Probabilistic Spatial Queries on Existentially Uncertain Data

Xiangyuan Dai; Man Lung Yiu; Nikos Mamoulis; Yufei Tao; Michail Vaitis

We study the problem of answering spatial queries in databases where objects exist with some uncertainty and they are associated with an existential probability . The goal of a thresholding probabilistic spatial query is to retrieve the objects that qualify the spatial predicates with probability that exceeds a threshold. Accordingly, a ranking probabilistic spatial query selects the objects with the highest probabilities to qualify the spatial predicates. We propose adaptations of spatial access methods and search algorithms for probabilistic versions of range queries and nearest neighbors and conduct an extensive experimental study, which evaluates the effectiveness of proposed solutions.

Palabras clave: Near Neighbor; Range Query; Uncertain Data; Skyline Query; Spatial Query.

- Advanced Query Processing III | Pp. 400-417

Topological Predicates Between Vague Spatial Objects

Alejandro Pauly; Markus Schneider

Topological predicates are an important element of database systems that allow manipulation of spatial data. Based on the necessity for such systems to handle uncertainty, we introduce a general mechanism that identifies vague topological predicates . This definition forms part of a formal data model referred to as VASA ( Vague Spatial Algebra ), in which the data types vague regions , vague lines , and vague points are defined in terms of existing definition of crisp spatial data types. Following this trend, the mechanism presented here identifies vague topological predicates on the basis of well defined crisp topological predicates. An example implementation of the mechanism for vague regions is given.

Palabras clave: Spatial Object; Topological Relationship; Simple Region; Vague Object; Constraint Rule.

- Advanced Query Processing III | Pp. 418-432